Cargando…

Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study

SIMPLE SUMMARY: Biochemical recurrence after radical prostatectomy is vitally important for long-term oncological control and subsequent treatment of these patients. We applied radiomic technique to extract features from MR images of prostate cancer patients, and used deep learning algorithm to esta...

Descripción completa

Detalles Bibliográficos
Autores principales: Yan, Ye, Shao, Lizhi, Liu, Zhenyu, He, Wei, Yang, Guanyu, Liu, Jiangang, Xia, Haizhui, Zhang, Yuting, Chen, Huiying, Liu, Cheng, Lu, Min, Ma, Lulin, Sun, Kai, Zhou, Xuezhi, Ye, Xiongjun, Wang, Lei, Tian, Jie, Lu, Jian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8234539/
https://www.ncbi.nlm.nih.gov/pubmed/34205786
http://dx.doi.org/10.3390/cancers13123098
_version_ 1783714107266957312
author Yan, Ye
Shao, Lizhi
Liu, Zhenyu
He, Wei
Yang, Guanyu
Liu, Jiangang
Xia, Haizhui
Zhang, Yuting
Chen, Huiying
Liu, Cheng
Lu, Min
Ma, Lulin
Sun, Kai
Zhou, Xuezhi
Ye, Xiongjun
Wang, Lei
Tian, Jie
Lu, Jian
author_facet Yan, Ye
Shao, Lizhi
Liu, Zhenyu
He, Wei
Yang, Guanyu
Liu, Jiangang
Xia, Haizhui
Zhang, Yuting
Chen, Huiying
Liu, Cheng
Lu, Min
Ma, Lulin
Sun, Kai
Zhou, Xuezhi
Ye, Xiongjun
Wang, Lei
Tian, Jie
Lu, Jian
author_sort Yan, Ye
collection PubMed
description SIMPLE SUMMARY: Biochemical recurrence after radical prostatectomy is vitally important for long-term oncological control and subsequent treatment of these patients. We applied radiomic technique to extract features from MR images of prostate cancer patients, and used deep learning algorithm to establish a predictive model for biochemical recurrence with high accuracy. The model was validated in 2 indepented cohorts with superior predictive value than traditional stratification systems. With the aid of this model, we are able to distinghuish patients with higher risk of developing biochemical recurrence at early stage, thus providing a window to initiate neoadjuvant or adjuvant therapies for prostate cancer patients. ABSTRACT: Biochemical recurrence (BCR) occurs in up to 27% of patients after radical prostatectomy (RP) and often compromises oncologic survival. To determine whether imaging signatures on clinical prostate magnetic resonance imaging (MRI) could noninvasively characterize biochemical recurrence and optimize treatment. We retrospectively enrolled 485 patients underwent RP from 2010 to 2017 in three institutions. Quantitative and interpretable features were extracted from T2 delineated tumors. Deep learning-based survival analysis was then applied to develop the deep-radiomic signature (DRS-BCR). The model’s performance was further evaluated, in comparison with conventional clinical models. The model achieved C-index of 0.802 in both primary and validating cohorts, outweighed the CAPRA-S score (0.677), NCCN model (0.586) and Gleason grade group systems (0.583). With application analysis, DRS-BCR model can significantly reduce false-positive predictions, so that nearly one-third of patients could benefit from the model by avoiding overtreatments. The deep learning-based survival analysis assisted quantitative image features from MRI performed well in prediction for BCR and has significant potential in optimizing systemic neoadjuvant or adjuvant therapies for prostate cancer patients.
format Online
Article
Text
id pubmed-8234539
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-82345392021-06-27 Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study Yan, Ye Shao, Lizhi Liu, Zhenyu He, Wei Yang, Guanyu Liu, Jiangang Xia, Haizhui Zhang, Yuting Chen, Huiying Liu, Cheng Lu, Min Ma, Lulin Sun, Kai Zhou, Xuezhi Ye, Xiongjun Wang, Lei Tian, Jie Lu, Jian Cancers (Basel) Article SIMPLE SUMMARY: Biochemical recurrence after radical prostatectomy is vitally important for long-term oncological control and subsequent treatment of these patients. We applied radiomic technique to extract features from MR images of prostate cancer patients, and used deep learning algorithm to establish a predictive model for biochemical recurrence with high accuracy. The model was validated in 2 indepented cohorts with superior predictive value than traditional stratification systems. With the aid of this model, we are able to distinghuish patients with higher risk of developing biochemical recurrence at early stage, thus providing a window to initiate neoadjuvant or adjuvant therapies for prostate cancer patients. ABSTRACT: Biochemical recurrence (BCR) occurs in up to 27% of patients after radical prostatectomy (RP) and often compromises oncologic survival. To determine whether imaging signatures on clinical prostate magnetic resonance imaging (MRI) could noninvasively characterize biochemical recurrence and optimize treatment. We retrospectively enrolled 485 patients underwent RP from 2010 to 2017 in three institutions. Quantitative and interpretable features were extracted from T2 delineated tumors. Deep learning-based survival analysis was then applied to develop the deep-radiomic signature (DRS-BCR). The model’s performance was further evaluated, in comparison with conventional clinical models. The model achieved C-index of 0.802 in both primary and validating cohorts, outweighed the CAPRA-S score (0.677), NCCN model (0.586) and Gleason grade group systems (0.583). With application analysis, DRS-BCR model can significantly reduce false-positive predictions, so that nearly one-third of patients could benefit from the model by avoiding overtreatments. The deep learning-based survival analysis assisted quantitative image features from MRI performed well in prediction for BCR and has significant potential in optimizing systemic neoadjuvant or adjuvant therapies for prostate cancer patients. MDPI 2021-06-21 /pmc/articles/PMC8234539/ /pubmed/34205786 http://dx.doi.org/10.3390/cancers13123098 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Yan, Ye
Shao, Lizhi
Liu, Zhenyu
He, Wei
Yang, Guanyu
Liu, Jiangang
Xia, Haizhui
Zhang, Yuting
Chen, Huiying
Liu, Cheng
Lu, Min
Ma, Lulin
Sun, Kai
Zhou, Xuezhi
Ye, Xiongjun
Wang, Lei
Tian, Jie
Lu, Jian
Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study
title Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study
title_full Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study
title_fullStr Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study
title_full_unstemmed Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study
title_short Deep Learning with Quantitative Features of Magnetic Resonance Images to Predict Biochemical Recurrence of Radical Prostatectomy: A Multi-Center Study
title_sort deep learning with quantitative features of magnetic resonance images to predict biochemical recurrence of radical prostatectomy: a multi-center study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8234539/
https://www.ncbi.nlm.nih.gov/pubmed/34205786
http://dx.doi.org/10.3390/cancers13123098
work_keys_str_mv AT yanye deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT shaolizhi deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT liuzhenyu deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT hewei deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT yangguanyu deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT liujiangang deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT xiahaizhui deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT zhangyuting deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT chenhuiying deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT liucheng deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT lumin deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT malulin deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT sunkai deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT zhouxuezhi deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT yexiongjun deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT wanglei deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT tianjie deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy
AT lujian deeplearningwithquantitativefeaturesofmagneticresonanceimagestopredictbiochemicalrecurrenceofradicalprostatectomyamulticenterstudy